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Control theory / Neural networks / Computational neuroscience / Artificial intelligence / Intelligent control / Robot / Reinforcement learning / Backpropagation / Industrial robot / Science / Cybernetics / Machine learning
Date: 2002-03-13 22:46:37
Control theory
Neural networks
Computational neuroscience
Artificial intelligence
Intelligent control
Robot
Reinforcement learning
Backpropagation
Industrial robot
Science
Cybernetics
Machine learning

Chapter 1 Introduction 1.1

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